All weather autonomously driven vehicles

ABSTRACT

Autonomously driven vehicles operate in rain, snow and other adverse weather conditions. An on-board vehicle sensor has a beam with a diameter that is only intermittently blocked by rain, snow, dust or other obscurant particles. This allows an obstacle detection processor is to tell the difference between obstacles, terrain variations and obscurant particles, thereby enabling the vehicle driving control unit to disregard the presence of obscurant particles along the route taken by the vehicle. The sensor may form part of a LADAR or RADAR system or a video camera. The obstacle detection processor may receive time-spaced frames divided into cells or pixels, whereby groups of connected cells or pixels and/or cells or pixels that persist over longer periods of time are interpreted to be obstacles or terrain variations. The system may further including an input for receiving weather-specific configuration parameters to adjust the operation of the obstacle detection processor.

REFERENCE TO RELATED APPLICATIONS

This Application is a Continuation of U.S. application Ser. No. 14/196,189, filed Mar. 4, 2014, the entire content of which is incorporated herein by reference.

FIELD OF THE INVENTION

This invention relates in general to driverless or autonomous vehicles, and more specifically to automobiles, trucks, and other specialty vehicles that operate out of controlled environments including open yard material handling systems that may experience adverse weather conditions.

BACKGROUND OF THE INVENTION

Sophisticated, human-capable vehicle robotics has been developed over the last 30 years, beginning with the pioneering work done in the Autonomous Land Vehicle (ALV) program funded by DARPA starting in the early 1980s. The earliest work was done at Carnegie-Mellon University, the Environmental Research Institute of Michigan (ERIM), MIT, Stanford Research Institute, and others, integrated into the DARPA Autonomous Land Vehicle prototype by Martin Marietta in Denver. Lowrie (1985) provides a good overview of the ALV and describes a vehicle control substantially the same as disclosure Smid et al. U.S. Patent Publication No. 2008/0262669 (2008). Kanade, Takeo, Thorpe, and Whittaker (1986) describe CMU contributions to ALV, which include a description of using 3D LADAR developed by ERIM as instrumental in obstacle detection and avoidance. Carmer, et al. (1996) reviews this technology from the perspective of 10 years of further work and understanding. Shafer, Stentz, and Thorpe (1986), Nasr, Bhanu, and Schaffer (1987). Turk et al (1987), Waxman et al. (1987), Asada (1988), Daily (1988), Dunlay (1988), and Turk et al. (1988) describe ALV and Navlab (a robotic vehicle developed in parallel to ALV as a Carnegie-Mellon testbed) basic architecture and parts of an autonomous driving vehicle, including roadway identification and following (lane keeping), path planning and replanning, obstacle detection and avoidance (heavily dependent upon 3D laser radar data to capture the three dimensional nature of obstacles), automotive controls (electric steer, speed control, etc.) and vehicle location (inertial and later GPS-based location estimation). This work discloses essentially all the features and architecture of subsequent work up through that reported in the DARPA Urban Challenge (2007 and 2008) and work presently being conducted by Google. The Wikipedia article “Autonomous Car” (per Dec. 23, 2012 see http://en.wikipedia.org/wiki/Autonomous_car) provides a good alternative overview of this prior art. The salient aspect of this prior work is that it assumed good weather conditions (typically indoor testing and outdoor testing or demonstrations in dry clear weather, sometimes in the day and night, but not in rain, snow, or flooded conditions).

Later programs that followed ALV include Army Demo I, DARPA Demo II, and again Army Demo III. While the automated driving built under these programs improved, this improvement was less conceptual innovation and more that the base technology in 3 dimensional imaging, GPS, and computing power substantially improved so earlier architecture could be more successfully realized. These programs are review by Shoemaker (2006), the government's program manager for Demo I, part of Demo II, and initially Demo III—also by and Matsumura et al. (2000). Demo II (circa 1996) and III (circa 2001) included all aspects of a modern self-driving vehicle, including GPS/Inertial navigation, 3D computer vision and ladar obstacle detection and avoidance, route planning based on mission maps, WiFi-like radio network operated telemetry, and vehicle controls by wire (electronic speed, steering and other vehicle function controls). Everett et al. (1992), Chun et al. (1995), and Carmer et al. (1996) specifically describe aspects of how path planning, obstacle detection, and collision avoidance were done in these programs. In parallel to the work done in the US, German and EU funded work beginning with the pioneering high speed roadway driving demonstrations by Dickmanns et. al. (1985) and later in the 1980s show this technology in the civilian setting on German roadways (in contrast to the ALV and Demos I-III work in the US which focused on off-road and over less developed roads). The Army and DARPA Demos I, II, and III focused on off-road driving, but also in dry and favorable weather conditions. The European work focused more on road and lane driving, but also during good weather conditions.

Perhaps the capstone in the effort to develop automated vehicles was the DARPA Grand Challenges, culminating in 2007 with the Urban Challenge (DARPA 2007). In this highly publicized challenge, 35 semifinalists were tested in Victorville, Calif. in November of 2007. Over twenty substantially met DARPA's automated driving criteria which included the following:

California driving rules (DARPA Rules Section 5.5.1),

speed limit controlled driving (DARPA Rules Section 1.7 “adherence to speed limits”),

per lane position keeping (DARPA Rules Section 1.7 “Follow paved and unpaved roads and stay in lane”),

proper position relative to other vehicles on the road (DARPA Rules Section 1.7 “Change lanes safely when legal and appropriate, such as when passing a vehicle or entering an opposing traffic lane to pass a stopped vehicle. Vehicles must not pass other vehicles queued at an intersection”) and (DARPA Rules 5.2.3, B4 “maintaining a minimum spacing equal to the forward vehicle separation distance”),

proper right of way behavior at intersections (DARPA Rules 5.2.3 B2. “Intersection precedence,” 5.2.5 D2 “Merge,” and D.4 “Left turn”),

speed merge and passing (DARPA Rules 5.2.2 A.10 “Leaving lane to pass” and A11. “Returning to lane after passing”)

general route planning to a mission specification (DARPA Rules 5.2.4 C4 “Dynamic Planning”), and

route execution with dynamic obstacle detection and avoidance (DARPA Rules C.2 “demonstrates ability to negotiate obstacle field safely”), and operating under conditions of variable or non-performance of GPS (DARPA Rules 5.2.4 C.6 “GPS Outage”).

In the late 1990s and early 2000s, work began on practical robotic vehicle applications including material handling platforms. Like prior work, these developments focused on single vehicle navigation using sensor (usually computer vision) feedback and assumed good environmental or weather conditions (which prevail inside buildings). The challenge for lift truck navigation systems is that they operate primarily indoors and therefore cannot know their location accurately through the method exploited extensively in outdoor vehicles, namely fusion of sensors with precision GPS. Indoor alternative absolute location determining methods must be used. Fabrizio et al. (1997) EP 0800129 B1 discloses an industrial lift truck with manual and driverless automated operation. This truck includes gyroscope, odometer (wheel revolution counting) and a computer vision sensor to determine location. This approach is further detailed in later publications to describe automated engagement of pallets. Further description of these computer vision-based sensors is given in EP 0712697 (1996) and U.S. Pat. No. 5,812,395 (1998). Pages et al. (2001—three references) describes using computer vision to locate the lift relative to a pallet. This work, like most of the work that follows, did not consider the significant variability possible in pallets and their respective loads, but did show proof of concept on a single type of demonstration pallet.

In 2005, Kelly et al. U.S. Pat. No. 6,952,488 describes a computer vision approach to identifying pallets or racks applied to robotic forklift control. Brose et al. (2006) in German patent DE102004047214 disclose using 2D and 3D data extracted by computer vision to detect landmark objects for use as guide posts. As disclosed these are specialized fiducials consisting of posts or other objects. Seelinger (2006) discloses a vision guidance-based approach to pallet engagement but does not further elaborate autonomous guidance except to say that the work applies to wire guided AGV systems (Automated Guided Vehicles—these typically follow stripes on the floor or guide wires buried in the floor that define the drive path). In U.S. Patent Publication 2007/0018811, Gollu describes a system for determining vehicle location tracking based on the object identification at known locations. This is the inverse of most of the prior references that locate objects relative to the vehicle.

U.S. Pat. No. 7,376,262 to Hu et al. (2008) describe a method that fuses image-based feature matching and 3D laser scanning with inertial sensors and GPS measurements to determine position of a robotic vehicle. The general concept of this approach has been thoroughly studied and disclosed in the automated vehicle community at least back to the mid 1980s (see earlier background reviewed) but like many disclosures, publications, and patents subsequent to that period, the specific method described was deemed to be unique especially describing in detail how this particular system fused image derived features with other location determining devices. U.S. Pat. No. 7,440,585 to Roh et al. (2008) describes an autonomous vehicle with an architecture like that of the ALV (1980s), Navlab (1980s), Demo II (mid 1990s), and Demo III (2001) that uses consecutive images to obtain a 3D target position from 3D fiducial features.

In 2009, Armesto et al., Bouguerra, et al., Moore et al., Tamba, et al., each describe alternative computer vision-based guidance approaches to forklift navigation. Tamba implements controls over a Clark lift truck that uses encoder, gyros, and odometer to determine estimates of relative motion and laser range finder, computer vision, and sonar to determine measurement relative to the absolute surrounding environment. Tamba shows many specific control laws that could be used and provides parametric performance curves of location determination using the particular location fusion approach disclosed. Moore describes a SLAM (Simultaneous Localization and Mapping) approach that utilizes a Tamba or Grand Challenge vehicle equivalent sensor suite. Moore's approach as described as the basis of MIT Urban Grand Challenge vehicle and a later MIT developed automated forklift based on a Toyota model.

The previous review clearly shows the general technology of autonomous driving of vehicles and the specific case of automatically driving material handling vehicles or lift trucks. The basic architecture of the automated vehicle was set early in the 1980s and publically disclosed widely. Specialization of the technology to material handling trucks has been widely developed and also reported both in the patent literature of the US and Europe and Asia.

Nearly all of the core technology, methods and architectures supporting automated driving were developed and disclosed in the 1980s and refined in the 1990s under European Union and U.S. Government funded and publically disclosed programs. As such, this technology is substantially in the public domain. The DARPA Urban Challenge was proof of technology readiness, and a further public disclosure (through papers openly published by all of the semifinalist the teams in 2007 and 2008—seet http://archive.darpa.mil/grandchallenge archival web site). The Urban Challenge was a milestone, showing that practical applications of human-safe automated driving were possible at the current state of the art. Notably, however, the demonstrations in California in 2007 were performed in dry desert weather conditions (no snow, running water, ice, or fog/dust). Refinements—including autonomous operation under a variety of inclement weather conditions—have yet to be implemented or perfected.

SUMMARY OF THE INVENTION

This invention improves upon existing autonomously driven vehicles by providing apparatus and methods enabling such vehicles to operate in rain, snow and other adverse weather conditions. Such an “all-weather” autonomously driven vehicle includes a plurality of environmental sensors and an obstacle detection processor that receives signals from the sensors to determine the presence of obstacles and terrain variations along a route taken by the vehicle. A vehicle driving control unit is operative to steer and/or adjust the speed of the vehicle in accordance with the route and the obstacles and the terrain variations. One or more of the on-board vehicle sensors have incident fields of view (IFOV) or return beam diameters that are only intermittently blocked by rain, snow, dust or other obscurant particles. This allows the obstacle detection processor is to tell the difference between obstacles, terrain variations and obscurant particles, thereby enabling the vehicle driving control unit to disregard the presence of obscurant particles along the route taken by the vehicle.

The sensor having a beam that is only intermittently blocked by obscurant particles forms part of a laser detection and ranging (LADAR) system, RADAR system or video camera. The obstacle detection processor may receive information in the form of time-spaced frames divided into cells or pixels, whereby groups of connected cells or pixels and/or cells or pixels that persist over longer periods of time are interpreted to be obstacles or terrain variations.

The system may further including an input for receiving weather-specific configuration parameters to adjust the operation of the obstacle detection processor. The weather-specific configuration parameters may be manually supplied, available for selection by a driver, or automatically detected by measuring temperature, precipitation, atmospheric clarity or other ambient conditions.

The system may further including a terrain grading system to determine physical characteristics associated with positive and negative obstacles that the vehicle is allowed to traverse without invoking obstacle avoidance behavior. Such physical characteristics may include an obstacle depth and width threshold, d and w, as well as an input for receiving weather-specific configuration parameters to adjust d and w based upon weather conditions or soil type.

The vehicle driving control unit may be further operative to adjust vehicle stopping distance as a function of weather-based reduced tire-terrain surface friction, and steer or adjust the speed of the vehicle as a function of visibility due to obscurant density.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1 shows the basic form of a sensor processing chain for a video or LADAR sensor in a prior art driverless vehicle system;

FIG. 2 illustrates how obstacles can be both excessively high or tall (positive obstacles) indicating that they should be avoided, but they can also be excessively deep as well (negative obstacles);

FIG. 3 shows that when the optical path used for a measurement is intermittently blocked by an obscurant, the blockage is dynamic and rapidly changes over each measurement location;

FIG. 4 depicts a speckle filter that removes small objects by determining their connected sizes or diameters;

FIG. 5 depicts a speckle filter that removes small objects that are moving and intermitted frame to frame;

FIG. 6 depicts another innovation used to accommodate weather and changing ground conditions which is based on the realization that passing over a portion of terrain can cause terrain deformation;

FIG. 7 illustrates how the sensor(s) often “see” the reflective majority of the ground but some small very deep “holes” in the ground that can be filtered or removed by similar methods as described in FIGS. 4 and 5, but applied to objects at or below the ground plane;

FIG. 8 illustrates one of many difficult to discriminate weather vs. ground terrain variational cases that affect how obstacles are detected and characterized for automated vehicle avoidance; and

FIG. 9 discloses how this invention adds additional blocks to the sensor processing in an autonomously driven vehicle, including a module that accepts as input the sensor(s) frames and processes them with weather/obscurant identification algorithms including but not limited to the ones already described and separates out weather related effects from terrain, navigation and obstacle-related effects.

DETAILED DESCRIPTION OF THE INVENTION

An autonomous driving system requires five basic capabilities:

(1) It has to know where things are and where it needs to go. This is typically provided in the form of a road or mission map (“map” for short) and checkpoints defining destinations (locations defined in the world on the map). The autonomy software plans routes from starting points to checkpoints through roads (legal mapped paths, represented as a list of way points) or zones (defined as areas through which any path can be taken that does not collide with an obstacle);

(2) It has to be capable of sensing where it is reliably in the environment (location in a driving lane, location along a road, location in the world, location relative to the map);

(3) It has to be able to sense and locate (relative to itself) objects to which it must react. These include impassible obstacles not already known from inclusion in the map (paths blocked, zones disallowed for driving, fallen trees, etc.), Also dynamic objects that move around in the world and can block planned paths (examples include other vehicles, traffic flow devices that change, people, and animals);

(4) It has to have a driving control system that reads and utilizes the data from sensors, understands the maps and how to plan or modify paths, understands how to generate detailed correct driving and safe vehicle behaviors in a timely manner, operates the vehicle driving control interfaces (steering, acceleration, braking), and has to be adaptive to vehicle and driver dynamics (i.e. each vehicle type responds differently and each driver has a preference or driving style the is safe and driver comfortable); and

(5) It must be able to fail in a controlled manner when driving conditions exceed its capabilities.

This invention focuses on how weather changes effect items (2), (3) and (5) and the method of implementation and operation of the sensors that localize the vehicle and locate obstacle under variable weather conditions.

To meet this challenge, we have developed a sensor suite and processing capability for allowing driverless vehicles to operate in fog, snow fall, rain, and deformable terrain (wheel ruts, erosion, etc.). The key insight is that the sensors not only detect the desired information (obstacle locations, terrain surface, road lanes, and locations), but also weather effects (falling snow flakes or rain, obscurants like fog or smoke) and ground deformations that may or may not be of consequence (i.e., ruts in the snow).

FIG. 1 shows the basic form of a sensor processing chain for a video or ladar sensor in a prior art driverless vehicles system. Sensor frames are captured in a periodic sequence (t=n, n+1, n+2). These frames have a 3 dimensional nature, i.e. a measurement value (or value tuple as in RGB) and a 3 dimensional measure (ladars provide a pixel x, y, range measurement relative to the sensor placement) or implied location (an RGB camera provides an x, y, and y can be used to approximate the range—alternatively a stereo camera pair can associate range with parallax).

The driverless vehicle converts the pixel locations to a vehicle centric plan view and estimates the size or height of obstacles to determine if they should be avoided. If so, the vehicle adjusts its drive path (the vehicle movement) to miss the obstacles or alternatively adapts speed to avoid collision (this might be to slow down or stop). Per the DARPA Urban Challenge rules, if the obstacle is a vehicle and the vehicle is in front moving not at all or slowly, a “go around behavior” that involves safe lane change and passing is elicited.

Per FIG. 2, obstacles can be both excessively high or tall (positive obstacles) indicating that they should be avoided, but they can also be excessively deep as well (negative obstacles). It has generally been observed (Larson 2011) that positive obstacles are easier to detect because their tops are visible to a line of sight sensor like a camera or a ladar. However, negative obstacles are harder to detect because while the sensor may detect the opening diameter of the hole, the actual bottom of the hole is not normally visible by line of sight until the sensor is practically on top of the hole.

In either case, in the prior art, it has been assumed that the sensor sees the obstacle or the ground except perhaps for sensor specific noise or erroneous readings. For instance, a ladar might read an erroneous range if a surface is non-reflective or tilted substantially way from the sensor line of sight. Sometimes a reading is erroneous if it slightly clips an edge, returning some incident energy but not enough for a reliable reading. Similarly, a camera might have faulty readings due to saturation (too much light) of underexposure (not enough light) of some of its pixels.

In the case of inclement weather, an external obscurant interferes with this assumption:

-   -   Rain drops obscure light reflected from the obstacle or ground.         It reflects prematurely light emitted from a sensor, generating         early or shortened measurements.     -   Snowflakes, much like rain drops obscure light reflected from         the obstacle or ground and also reflect emitted light in line of         sight with the sensor.     -   Fog or other particulate obscurants block light reflected from         the ground or objects, but provide a degree of opacity to light         that is shined onto the cloud, effectively creating a blurring         of the obstacles or terrain beneath or on the other side of         obscurant.

The degree to which these effects occur is dependent on the obscurant particle size and the corresponding wavelength of the energy which is used for measurement. A RADAR wave which is physically large (automotive radar at about 77 GHz has a wavelength of 4 millimeters in air) can operate successfully through most snow, rain or dust without substantial effect because the wavelength is much longer than the obscurant particles. One the other hand visible and near visible light (CCD cameras and ladars) operate at about 500 THz or a wavelength in the 400 to 900 nm size range. These waves are easily blocked by snow, rain and most obscurants.

Thus, one solution to navigate through rain or snow would be to use RADAR. However, another phenomenon makes that problematic. There is a well known relationship between beam width (or collimation) and frequency which can be written as ½ power beam width=k×ψ/D. The term k is a constant based on antenna type and can be estimated as 70 degrees, w is wavelength, and D is antenna diameter. For the RADAR example, this would be 70×4 mm/100 mm=˜3 degrees. As a distance of 100 meters a three degree beam could resolve a 5 meter object, or one about the size of a car. This works for anti-collision RADAR, but does not exhibit sufficiently high resolution to reliably detect people, pot holes, or even debris in the road.

The preferred embodiment therefore uses optical sensors that have acceptable collimation but are actually more easily blocked by obscurant particles like rain, snow or dust. In accordance with the invention, the optical path used for each measurement is intermittently blocked by the obscurant, this blockage is dynamic and rapidly changes over each measurement location (FIG. 3). Also, the blockages subtend a small angle so that they are visible in the measurement data as very small objects that can be ignored. As such, image processing algorithms can be built that filter out erroneous measurements, leaving actual obstacles and ground data by removing data items that are not persistent (i.e. they show up in one frame of data but not the next) or they are not large enough to matter to a moving vehicle (i.e. they do not represent obstacles large enough to cause vehicle damage or cause harm to pedestrians).

The preferred approach is essentially a speckle filter that removes small and intermittent objects by (a) determining their connected sizes or diameters (FIG. 4), and (b) by comparing target pixels (pixels that indicate presence of an object near enough to the moving vehicle to require some kind of reaction) to the previous frame (frames, FIG. 5) to see if these objects are persistent (which they need to be if they are real as opposed to moving obscurants).

Another innovation used to accommodate weather and changing ground conditions is based on the realization that passing over a portion of terrain can cause terrain deformation (FIG. 6). Sufficiently deep tracks or holes in the ground will cause a vehicle to become stuck, but smaller ones made from deformable material (like soft moisten soil or snow) can be driven through without difficulty, depending on the characteristics of the vehicle drive and traction train. In our preferred embodiments, we implement a depth and width threshold, d, and w, which are environment and weather adjustable so that the size of maximum “holes” can change with the soil type and weather.

Sometimes this effect also leads to the identification of deep and small diameter negative objects that are due to high reflectivity of the weather related ground cover (snow) and low reflectivity pavement or no-reflectivity small pools of water. In this case, the sensor(s) often “see” the reflective majority of the ground but also small very deep “holes” in the ground that can be filtered or removed by similar methods as described in FIGS. 4 and 5, but applied to objects at or below the ground plane (FIG. 7).

As shown in FIG. 8, differentiating a puddle from a pot hole is subtle. Both puddles and pot holes present a missing segment of ground terrain data due to reflectance light away from the sensor for puddles and due to sensor line of sight blockage for pot holes. Only the small lip at the far end of the pot hole which is not seen for a puddle differentiates the cases. There are many other similar cases that can cause confusion so at least some of the parameters set into the obstacle detection and localization system that are environmental and weather conditional have to provide the system a means to choose among alternative interpretations based on weather and maximum vehicle, passenger, and pedestrian safety.

Another important aspect of the invention is to modulate driving speed with observed visibility. The distance and quality of visibility in the optical driving sensors per FIG. 3, is directly related to the amount of the visual frame data that is being eliminated due to processing like that described in FIGS. 4 and 5. As one eliminates obscurants due to their persistence and size, one is also eliminating potential obstacles of a certain size beyond a certain range. Therefore, based on the maximum range that an obstacle can be detected exhibiting these minimum size parameters, the vehicle driving control must slow down (so that the vehicle's emergency stopping distance is not exceeded relative to the range to the detected obstacle). With no visibility (all visual obstacle data is blocked by obscurants), the vehicle has to completely stop (and for practical cases, the vehicle will have to stop or pause autonomous operation when visibility fall below some safe threshold of visibility).

Furthermore, for some weather conditions (like ice and snow) one must also take into account that vehicle stopping distance for any given forward speed will be longer due to reduced tire-terrain surface friction. Under idealize road conditions (Cyberphysics 2014) (BBC 2014) (Queensland 2014) and (US Federal Highway Administration 2014) provide guidance as applied to the typical passenger car or light truck. Under icing and rain conditions (BBC 2013) and (Winterservice 2014) provide guidance, but we suggest to the designer of autonomous driving that these figures and tables should be check by experiment for any particular autonomous vehicle design.

Referring back to FIG. 1, this invention discloses adding an additional blocks to the sensor processing change as shown in FIG. 9. The key sensor processing element is a module that accepts as input the sensor(s) frames and processes them with weather/obscurant identification algorithms including but not limited to the ones already described and separates out weather related effects from terrain, navigation and obstacle-related effects. Generally, as shown in the diagram, the weather effects would be identified, removed, and discarded.

Because weather is variable and also changes some of the parameters used to detect and determine the safety of traversal of certain ground features (like ruts in the snow or mud), a weather type set of configuration or threshold parameters are required and selected based on weather type. As shown, these parameters change some of the decision behaviors of the weather effects removal preprocessing module, and also the obstacle detect and localization module.

These weather parameters can be manually supplied by a developer or made available for selection by a driver or automatically detected by measuring certain aspects of the weather including but not limited to temperature, precipitation, atmospheric clarity (i.e., how far it is possible for a sensor to see through the air). 

The invention claimed is:
 1. An all-weather autonomously driven vehicle, comprising: a plurality of environmental sensors disposed on the vehicle; wherein the plurality of environmental sensors includes a terrain sensor having a field of view that includes the ground plane in front of the vehicle; an obstacle detection processor receiving signals from the terrain sensor to determine the presence of obstacles and terrain variations along a route taken by the vehicle; wherein the obstacles and terrain variations include positive obstacles that extend upwardly from the ground plane and negative obstacles that extend downwardly from the ground plane; a terrain grading system operative to determine physical characteristics associated with negative obstacles, including obstacle depth and width thresholds, d and w; a vehicle driving control unit operative to steer or adjust the speed of the vehicle; and wherein the obstacle detection processor is further operative to invoke obstacle avoidance behavior by sending a signal to the vehicle driving control unit if the obstacle depth or width thresholds are exceeded, thereby causing the vehicle driving control unit to steer or adjust the speed of the vehicle to avoid the obstacle.
 2. The all-weather autonomously driven vehicle of claim 1, wherein the terrain sensor forms part of a laser detection and ranging (LADAR) system.
 3. The all-weather autonomously driven vehicle of claim 1, wherein the terrain sensor forms part of a radio detection and ranging (RADAR) system.
 4. The all-weather autonomously driven vehicle of claim 1, wherein the terrain sensor is a video camera.
 5. The all-weather autonomously driven vehicle of claim 1, further including an input for receiving weather-specific configuration parameters to adjust d and w based upon weather conditions or soil type.
 6. The all-weather autonomously driven vehicle of claim 1, wherein the vehicle driving control unit is further operative to adjust vehicle stopping distance as a function of weather-based reduced tire-terrain surface friction.
 7. The all-weather autonomously driven vehicle of claim 1, wherein the vehicle driving control unit is further operative to steer or adjust the speed of the vehicle as a function of visibility due to obscurant density.
 8. The all-weather autonomously driven vehicle of claim 1, wherein the obstacle detection processor is operative to distinguish between pot holes and puddles.
 9. The all-weather autonomously driven vehicle of claim 8, wherein the obstacle detection processor is operative to distinguish between pot holes and puddles by detecting a small lip at the far end of a pot hole which is not present for a puddle.
 10. The all-weather autonomously driven vehicle of claim 1, further including an input for receiving weather-specific configuration parameters to adjust the operation of the obstacle detection processor.
 11. The all-weather autonomously driven vehicle of claim 10, wherein the weather-specific configuration parameters are manually supplied.
 12. The all-weather autonomously driven vehicle of claim 10, wherein the weather-specific configuration parameters are made available for selection by a driver.
 13. The all-weather autonomously driven vehicle of claim 10, wherein the weather-specific configuration parameters are automatically detected by measuring temperature, precipitation, atmospheric clarity or other ambient conditions. 